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Software / Probability / Statistics / Archive formats / Dimension reduction / Principal component analysis / Mixture model / Apache Subversion / Markov chain / Restricted Boltzmann machine / Version control / Tar
Date: 2016-07-16 15:30:43
Software
Probability
Statistics
Archive formats
Dimension reduction
Principal component analysis
Mixture model
Apache Subversion
Markov chain
Restricted Boltzmann machine
Version control
Tar

Latent Variable Models for Predicting File Dependencies in Large-Scale Software Development Diane J. Hu1 , Laurens van der Maaten1,2 , Youngmin Cho1 , Lawrence K. Saul1 , Sorin Lerner1 1 Dept. of Computer Science & Engin

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